short investment horizons, higher order beliefs, and difficulty of backward induction: price bubbles...
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Short Investment Horizons, Higher Order Beliefs, and Difficulty of Backward Induction: Price Bubbles
and Indeterminacy in Financial Markets
Shinichi Hirota, Juergen Huber, Thomas Stoeckl, and Shyam Sunder
Yale School of Management Faculty WorkshopApril 30, 2014
An Overview
• Explore – Why prices may deviate from fundamental values
in otherwise well-functioning markets?
• Focus on– Effect of the Investors’ Time Horizon
• Conduct– Laboratory Experiments
Main Findings
• Prices tend to deviate from fundamental levels (bubbles, indeterminacy) when investors have horizons shorter than the maturity of securities they trade
• Difficulty of forming higher order beliefs about future cash flows
• Difficulty of backward induction through higher order beliefs to fundamental present values
Previous Research on Bubbles
(A) Rational Bubbles– Blanchard and Watson (1982), Tirole (1985)– Infinite Maturity
(B) Irrational Bubbles– Shiller (2000), Behavioral Finance– Emotion, Psychological Factors
Our Paper
• Provides a different view.
– includes (A) as a special case.
– suggests when (B) is likely to occur.
6
Fundamental Value vs. Price for a simple, single dividend security
Fundamental value:
Long-term Investor’s Valuation:
(1)
(2)
Short-term Investor’s Valuation:
)( mtttt DEVP
)( mttt DEF
)( ktttt PEVP (3)
Pt is not necessarily equal to Ft
7
For Pt to be equal to Ft
• Rational Expectation of P t+k
• Homogeneous Investors
• The Law of Iterated Expectations • By recursive process, Pt = Ft is derivable by
the backward induction.
8
Difficulty of Backward Induction• Backward Induction may fail.
– Infinite maturity (rational bubbles) • Blanchard and Watson (1982), Tirole (1985)
– Infinite number of trading opportunities • Allen and Gorton (1993)
– Heterogeneous Information• Froot, Scharfsten, and Stein (1992), Allen, Morris, and Shin (2002)
– Rationality may not be common knowledge• Delong et al. (1990a)(1990b), Dow and Gorton (1994)
9
Price Bubble sans Dividend Anchors
• There are cases where short-term investors have difficulty in backward induction.
• Stock prices (Pt ) form deviate from fundamentals ( Ft )
No longer anchored by future dividends
)( ktttt PEVP
10
In an Earlier Experimental StudyHirota, Shinichi and Shyam Sunder. “Price Bubbles sans Dividend Anchors: Evidence
from Laboratory Stock Markets,” Journal of Economic Dynamics and Control 31, no. 6 (June 2007): 1875-1909.
• What happens when short-term investors have difficulty in the backward induction?
• Two kinds of the lab markets – (1) Long-term Horizon Session– (2) Short-term Horizon Session
• Bubbles tend to arise in (2), but not in (1)
11
Long-term Horizon Session
Single terminal dividend at the end of period 15.
An investor’s time horizon is equal to the security’s maturity.
Prediction: Pt = D
Period 1 Period 15
D(Trade)
12
Short-term Horizon Session
Single terminal dividend at the end of period 30.
The session will “likely” be terminated earlier.
If terminated earlier, the stock is liquidated at the following period predicted price.
An investor’s time horizon is shorter than the maturity and it is difficult to backward induct.
Prediction: Pt D
Period 1 Period x Period 30
DEx (Px+1)(Trade)
13
Figure 4: Stock Prices and Efficiency of Allocations for Session 4(Exogenous Terminal Payoff Session)
14
Figure 5: Stock Prices and Efficiency of Allocations for Session 5(Exogenous Terminal Payoff Session)
15
Figure 6: Stock Prices for Session 6 (Exogenous Terminal Payoff Session)
16
Figure 7: Stock Prices and Efficiency of Allocations for Session 7(Exogenous Terminal Payoff Session)
17
In long-horizon sessions
• Long-horizon Investors play a crucial role in assuring efficient pricing.– Their arbitrage brings prices to the fundamentals.
• Speculative trades do not seem to destabilize prices.– 39.0% of transactions were speculative trades.
• By contrast, in short horizon treatments:
18
Figure 8: Stock Prices and Efficiency of Allocations for Session 1 (Endogenous Terminal Payoff Session)
19
Figure 9: Stock Prices and Efficiency of Allocations for Session 2 (Endogenous Terminal Payoff Session)
20
Figure 10: Stock Prices and Efficiency of Allocations for Session 8(Endogenous Terminal Payoff Session)
21
Figure 11: Stock Prices and Efficiency of Allocations for Session 9(Endogenous Terminal Payoff Session)
22
Figure 12: Stock Prices for Session 10(Endogenous Terminal Payoff Session)
23
Figure 13: Stock Prices for Session 11 (Endogenous Terminal Payoff Session)
24
Discussion (short-horizon sessions)
• Price levels and paths are indeterminate.– Level
• Small Bubble (Session 1)• Large Bubble (2, 8, 9, 10)• Negative Bubble (11)
– Path• Stable Bubble (1, 11, 2 ?)
– Rational Bubble• Growing Bubble (8, 9, 10)
– Amplification Mechanism, Positive Feedback
25
Result
• In the long-horizon sessions, price expectations are consistent with backward induction.
• In the short-horizon sessions, price expectations are consistent with forward induction.
26
However, Objections to Design of the Short-Horizon Sessions
Single terminal dividend at the end of period 30.
The session will “likely” be terminated earlier.
If terminated earlier, the stock is liquidated at the following period predicted price.
Environment not fully specified
In the current work, we use a fully specified overlapping generations structure
Period 1 Period x Period 30
DEx (Px+1)(Trade)
Markets with Overlapping Generations of Traders
• All markets have 16 periods of trading• Each period lasts for 120 seconds• Every period has two overlapping generations of five traders each in the
market• Only one initial generation is endowed with assets (single common
knowledge dividend of 50 paid at maturity—end of period 16)• All other generations enter with cash, can buy assets from the “old”
generation, and sell them when they become “old” to exit the market with cash
• Individuals may re-enter after sitting out the market for one or more (random number) of generations (in T4 and T8 only)
• Each session is repeated six times (independently with different subjects)• Equilibrium transaction volume per session: 160
Table 1: Overlapping Generations Experimental Design
PeriodSubjects 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16
T15 G0
5 G1
T2
5 G0
5 G1
5 G2
T4
5 G0
5 G1
5 G2
5 G3
5 G4
T8
5 G0
5 G1
5 G2
5 G3
5 G4
5 G5
5 G6
5 G7
5 G8
Table 3: Treatment ParametersTreatment T1L T1H T2L T2H T4L T4H T8L T8HMarket setup No. of generations 2 2 3 3 5 5 9 9Terminal dividend 50 50 50 50 50 50 50 50Initial No. assets/trader G0 32 32 16 16 8 8 4 4Initial No. assets G(i) 0 0 0 0 0 0 0 0Total assets outstanding 160 160 80 80 40 40 20 20Total value of assets 8,000 8,000 4,000 4,000 2,000 2,000 1,000 1,000Initial cash/trader G0 0 0 0 0 0 0 0 0Initial cash/trader G(i) 3,200 16,000 1,600 8,000 800 4,000 400 2,000Total cash 16,000 80,000 8,000 40,000 4,000 20,000 2,000 10,000Cash-asset-ratio (C/A-ratio) 2 10 2 10 2 10 2 10Invited subj. (3n+3) 15a 15a 18 18 18 18 18 18Participating subjects 90 90 108 108 108 108 108 108 Exchange rates (Taler/€) Generation 0 (G0) 100 100 100 100 100 100 100 100Transition generations 100 500 100 500 100 500Last generation 200 1,000 200 1,000 200 1,000 200 1,000Predictors 133 133 133 133 133 133 133 133Exp. payout/subject (euros) 16 16 16 16 16 16 16 16
NOTES: The following parameters are identical across all treatments: Number of traders/generation (5); number of active generations (2); market size (10 traders); period length (120 sec.); total number of periods (16); number of markets per treatment (6); number of expected transactions (160).a In treatments T1LH we invited 15 subjects instead of 18 as no subject pool for future generations is needed. However we invited five subjects to serve as predictors.
Table 2: Treatment Overview
Liquidity
Low (C/A ratio=2)
High(C/A ratio=10)
Number of
entering
generations
1 T1L T1H
2 T2L T2H
4 T4L T4H
8 T8L T8H
Figure A3: Individual market results for T1L.
Treatment: 1 Generation, Low Liquidity
Treatment: 1 Generation, Low Liquidity
Treatment: 2 Generations, Low Liquidity
Treatment: 2 Generations, Low Liquidity
Treatment: 4 Generations, Low Liquidity
Treatment: 4 Generations, Low Liquidity
Treatment: 8 Generations, Low Liquidity
Treatment: 8 Generations, Low Liquidity
Figure 1: Low Liquidity Treatments
Figure 2: High Liquidity Treatments
Figure 2: High Liquidity Treatments
Table 4: Formulae for market efficiency measures
Figure A2: Average absolute prediction error.
Table 5: Treatment averages for market efficiency measures
Relative Absolute Deviation
Relative Deviation
Bid-Ask Spread
Std. Dev. of Log
ReturnsShare
Turnover T1L 11.43% -5.24% 8.79% 4.70% 1.60 T2L 35.47% -18.95% 19.92% 17.56% 1.69 T4L 42.92% -34.07% 22.52% 25.16% 1.56
T8L 43.03% -30.48% 21.69% 26.24% 1.05 T1H 41.99% 37.39% 29.61% 14.08% 2.01 T2H 77.02% 38.81% 55.04% 22.70% 1.59 T4H 73.86% 52.11% 23.37% 17.72% 1.57 T8H 118.67% 103.48% 65.95% 18.17% 1.07
Table 6: Differences between averages across treatments, same Liquidity (RAD, RD, SPREAD, VOLA, and ST two-sided Mann-Whitney U)
RAD T2L T4L T8L T2H T4H T8HT1L 24.03%** 31.48%*** 31.60%*** T1H 35.03% 31.87% 76.67%*T2L 7.45% 7.56% T2H -3.16% 41.64%T4L 0.11% T4H 35.03%
RD T2L T4L T8L T2H T4H T8HT1L -13.70%** -28.83%*** -25.23%** T1H 1.42% 14.71% 66.09%T2L -15.13% -11.53% T2H 13.29% 64.67%T4L 3.60% T4H 51.38%
SPREAD T2L T4L T8L T2H T4H T8HT1L 11.13%* 13.73%** 12.90%** T1H 25.43% -6.24% 36.34%T2L 2.59% 1.76% T2H -31.67% 10.91%T4L -0.83% T4H 42.58%**
VOLA T2L T4L T8L T2H T4H T8HT1L 12.86%** 20.46%*** 21.54%*** T1H 8.61% 3.64% 4.09%T2L 7.60% 8.68%* T2H -4.98% -4.53%T4L 1.08% T4H 0.45%
ST T2L T4L T8L T2H T4H T8HT1L 0.09 -0.03 -0.55** T1H -0.43 -0.44 -0.94**T2L -0.12 -0.64*** T2H -0.02 -0.52**T4L -0.51 T4H -0.50**
Table 7: Differences between averages across treatments, different Liquidity (RAD, RD, SPREAD, VOLA, and ST two-sided Mann-Whitney U)
H minus L RAD RD SPREAD VOLA ST
T130.56%
**42.64%
***20.82%
*** 9.39%* 0.42
T2 41.56%57.76%
**35.12%
* 5.14% -0.10
T4 30.95%86.18%
*** 0.86% -7.44% 0.01
T875.64%
*133.96%***
44.26%** -8.07% 0.02
Price Predictions/Expectations
• Not yet analyzed for the current study• Hirota and Sunder (2007): results show that when subjects
cannot do backward induction, they resort to forward induction, and simply project past data in forming their expectations about the future
• In long-horizon sessions, future price expectations are formed by fundamentals.
– Speculation stabilizes prices.
• In short-term sessions, future price expectations are formed by their own or actual prices.
– Speculation may destabilize prices.
Wrap Up
• Investors’ short-term horizons, and the attendant difficulty of the backward induction, tends to give rise to price bubbles/indeterminacy.– When prices lose dividend anchors and tend to
become indeterminate.
– Future price expectations are formed by forward induction.
Implications• Bubbles are known to occur more often in markets
for assets with – (i) longer maturity and duration– (ii) higher uncertainty
• Consistent with the lab data• Inputs to expectation formation matter:
– Dividend policy matters!• Ex post, market inefficiency, anomalies, and behavioral
phenomena more likely to be observed in markets dominated by short-horizon investors (difficulty of backward induction)
Thank You!
Shyam.sunder@yale.eduhttp://faculty.som.yale.edu/shyamsunder/research.html
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